Deep Dive Into the Use of Image Processing and Object Detection to Identify Pneumonia
Deep Dive Into the Use of Image Processing and Object Detection to Identify Pneumonia
Prithvi Sairaj Krishnan, USA
Abstract
Pneumonia is a major respiratory infection causing significant global morbidity and mortality, especially in developing nations with inadequate medical infrastructure. Early diagnosis through chest X-ray imaging is crucial but challenging. This study developed an automated computer-aided diagnosis system using deep learning to detect pneumonia from chest X-rays. An ensemble of three pre-trained convolutional neural network models (GoogLeNet, ResNet-18, DenseNet-121) was employed, with a novel weighted average ensemble technique based on evaluation metric scores. Evaluated on two public pneumonia X-ray datasets using five-fold cross-validation, the approach achieved high accuracy (98.2%, 86.7%) and sensitivity (98.19%, 86.62%), outperforming state-of-the-art methods. With pneumonia-causing over 2.5 million annual deaths worldwide, this accurate automated model can assist radiologists in timely diagnosis, especially in resource-limited settings. Its integration into clinical decision support systems has the potential to improve pneumonia management and outcomes significantly.
Keywords
Convolutional Neural Networks, Pneumonia, X-Rays, Model, Machine Learning
Full Text : https://aircconline.com/csit/papers/vol14/csit141301.pdf
Abstract URL : https://aircconline.com/csit/abstract/v14n13/csit141301.html
Volume URL : https://airccse.org/csit/V14N13.html
#convolutionalneuralnetworks #xrays #model #machinelearning #objectdetection #signalprocessing #imageprocessing
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